Title :
Evaluation on State of Charge Estimation of Batteries With Adaptive Extended Kalman Filter by Experiment Approach
Author :
Rui Xiong ; Hongwen He ; Fengchun Sun ; Kai Zhao
Author_Institution :
Nat. Eng. Lab. for Electr. Vehicles, Beijing Inst. of Technol., Beijing, China
Abstract :
An accurate State-of-Charge (SoC) estimation plays a significant role in battery systems used in electric vehicles due to the arduous operation environments and the requirement of ensuring safe and reliable operations of batteries. Among the conventional methods to estimate SoC, the Coulomb counting method is widely used, but its accuracy is limited due to the accumulated error. Another commonly used method is model-based online iterative estimation with the Kalman filters, which improves the estimation accuracy in some extent. To improve the performance of Kalman filters in SoC estimation, the adaptive extended Kalman filter (AEKF), which employs the covariance matching approach, is applied in this paper. First, we built an implementation flowchart of the AEKF for a general system. Second, we built an online open-circuit voltage (OCV) estimation approach with the AEKF algorithm so that we can then get the SoC estimate by looking up the OCV-SoC table. Third, we proposed a robust online model-based SoC estimation approach with the AEKF algorithm. Finally, an evaluation on the SoC estimation approaches is performed by the experiment approach from the aspects of SoC estimation accuracy and robustness. The results indicate that the proposed online SoC estimation with the AEKF algorithm performs optimally, and for different error initial values, the maximum SoC estimation error is less than 2% with close-loop state estimation characteristics.
Keywords :
Kalman filters; adaptive filters; battery powered vehicles; covariance analysis; flowcharting; iterative methods; secondary cells; AEKF algorithm; Coulomb counting method; OCV estimation; SoC estimation; adaptive extended Kalman filter; battery system; covariance matching approach; electric vehicle; implementation flowchart; model-based online iterative estimation; open circuit voltage; state of charge estimation; Adaptation models; Batteries; Discharges (electric); Estimation; Kalman filters; System-on-a-chip; Voltage measurement; Adaptive extended Kalman filter (AEKF); battery management system; electric vehicles (EVs); lithium-ion battery; state of charge (SoC);
Journal_Title :
Vehicular Technology, IEEE Transactions on
DOI :
10.1109/TVT.2012.2222684